Text to Blind Motion.

Hee Jae Kim, Kathakoli Sengupta, Masaki Kuribayashi, Hernisa Kacorri, Eshed Ohn-Bar
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Abstract

People who are blind perceive the world differently than those who are sighted, which can result in distinct motion characteristics. For instance, when crossing at an intersection, blind individuals may have different patterns of movement, such as veering more from a straight path or using touch-based exploration around curbs and obstacles. These behaviors may appear less predictable to motion models embedded in technologies such as autonomous vehicles. Yet, the ability of 3D motion models to capture such behavior has not been previously studied, as existing datasets for 3D human motion currently lack diversity and are biased toward people who are sighted. In this work, we introduce BlindWays, the first multimodal motion benchmark for pedestrians who are blind. We collect 3D motion data using wearable sensors with 11 blind participants navigating eight different routes in a real-world urban setting. Additionally, we provide rich textual descriptions that capture the distinctive movement characteristics of blind pedestrians and their interactions with both the navigation aid (e.g., a white cane or a guide dog) and the environment. We benchmark state-of-the-art 3D human prediction models, finding poor performance with off-the-shelf and pre-training-based methods for our novel task. To contribute toward safer and more reliable systems that can seamlessly reason over diverse human movements in their environments, our text-and-motion benchmark is available at https://blindways.github.io/.

文本到盲动。
盲人对世界的感知与正常人不同,这可能导致不同的运动特征。例如,当过十字路口时,盲人可能会有不同的运动模式,比如更多地偏离直线,或者在路边和障碍物周围使用触摸探索。对于自动驾驶汽车等技术中嵌入的运动模型来说,这些行为似乎更难以预测。然而,3D运动模型捕捉这种行为的能力以前还没有研究过,因为现有的3D人体运动数据集目前缺乏多样性,并且偏向于有视力的人。在这项工作中,我们引入了盲道,这是第一个针对盲人行人的多模态运动基准。我们使用可穿戴传感器收集3D运动数据,11名盲人参与者在现实世界的城市环境中导航8条不同的路线。此外,我们还提供了丰富的文本描述,以捕捉盲人行人的独特运动特征以及他们与导航辅助设备(例如,白手杖或导盲犬)和环境的相互作用。我们对最先进的3D人类预测模型进行了基准测试,发现现成的和基于预训练的方法在我们的新任务中表现不佳。为了开发更安全、更可靠的系统,使其能够无缝地对环境中不同的人类运动进行推理,我们的文本和运动基准可以在https://blindways.github.io/上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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